Coronary Artery Disease Detection from PCG signals using Time Domain based Automutual Information and Spectral Features

Sagar Suresh Kumar, V. K
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引用次数: 1

Abstract

This paper proposes a quick, compact and cost-effective point-of-care stethoscope-based device that detects Coronary Artery Disease (CAD) from phonocardiogram (PCG) signals, i.e. Recordings of heart sounds, compared to existing methods which are either expensive or are unable to diagnose until the conditions too severe. PCG signals are extracted from patients using a condenser microphone mounted on a stethoscope and is followed by amplification and filtering. The signals are passed through the laptop using an audio jack and digitized. Thereafter they are segmented into the 4 states S1, systole, S2 and diastole using a Hidden Semi Markov Model (HSMM). Afterwards, the diastolic phases are isolated and both time and frequency domain features are analyzed. In the time domain, features are extracted using a nonlinear function, the Automutual Information. In the frequency domain, both high and low-frequency domain features were extracted. A Support Vector Classifier using a Radial Basis Function was trained on 190 recordings from the 2016 PhysioNet/Cinc challenge and obtained an accuracy of 0.74, indicating the combined use of both time and frequency measures from PCG signals could be viable. Such a product could be of great use to clinicians as a quick, inexpensive and primary means of checking whether or not a patient has CAD.
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基于时域自动信息和频谱特征的PCG信号冠状动脉疾病检测
本文提出了一种快速,紧凑和具有成本效益的基于听诊器的设备,该设备可以从心音图(PCG)信号(即心音记录)中检测冠状动脉疾病(CAD),而现有的方法要么昂贵,要么无法诊断,直到病情过于严重。使用安装在听诊器上的电容式麦克风从患者身上提取PCG信号,然后进行放大和滤波。信号通过音频插孔通过笔记本电脑并进行数字化。然后利用隐半马尔可夫模型(HSMM)将其划分为S1、收缩期、S2和舒张期4种状态。然后对舒张相进行分离,分析其时域和频域特征。在时域,使用非线性函数自动信息提取特征。在频域,提取高、低频域特征。使用径向基函数的支持向量分类器在2016年PhysioNet/Cinc挑战赛的190个记录上进行了训练,获得了0.74的准确率,这表明结合使用PCG信号的时间和频率测量是可行的。这种产品对临床医生来说是一种快速、廉价和主要的检查病人是否患有CAD的方法。
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